I am learning Apache Spark with Scala and would like to use it to process a DNA data set that spans multiple lines like this:
ATGTAT
ACATAT
ATATAT
I want to map this into groups of a fixed size k and count the groups. So for k=3, we would get groups of each character with the next two characters:
ATG TGT GTA TAT ATA TAC
ACA CAT ATA TAT ATA TAT
ATA TAT ATA TAT
...then count the groups (like word count):
(ATA,5), (TAT,5), (TAC,1), (ACA,1), (CAT,1), (ATG,1), (TGT,1), (GTA,1)
The problem is that the "words" span multiple lines, as does TAC
in the example above. It spans the line wrap. I don't want to just count the groups in each line, but in the whole file, ignoring line endings.
In other words, I want to process the entire sequence as a sliding window of width k over the entire file as though there were no line breaks. The problem is looking ahead (or back) to the next RDD row to complete a window when I get to the end of a line.
Two ideas I had were:
- Append k-1 characters from the next line:
ATATATAC ACATATAT ATATAT
I tried this with the Spark SQL lead() function, but when I tried executing a flatMap, I got a NotSerializableException for WindowSpec. Is there any other way to reference the next line? Would I need to write a custom input format?
- Read the entire sequence in as a single line (or join lines after reading):
ATATATACATATATATAT
Is there a way to read multiple lines so they can be processed as one? If so, would it all need to fit into the memory of a single machine?
I realize either of these could be done as a pre-processing step. I was wondering the best way is to do it within Spark. Once I have it in either of these formats, I know how to do the rest, but I am stuck here.